Power Monitoring System in Solar Power Plant Using LabVIEW

Solar energy entrenched the foremost exuberant renewable energy resources obtainable and in most regions of the plant its theoretical potential is much in far more than present total primary energy provide in those regions. The work knowledge of information watching is very helpful therefore its decreasing the manual work and therefore the errors in data. associate degree investment in an exceedingly facility infrastructure are often a troublesome prospect for any plant engineer. The modularity of the system makes the development of dispatch centers easier, beginning with the fore most visual of measured values and ending with distributed integrated systems designed for giant energy power grids and their power sources. Special stress is placed on high dependability the quick creation of application and straightforward setup which might be done even by less old users. Because of the innovative resolution the system will discover and report all technical and physical breakdowns occurring within the power house

[1]  Caro Lucas,et al.  Imperialist competitive algorithm: An algorithm for optimization inspired by imperialistic competition , 2007, 2007 IEEE Congress on Evolutionary Computation.

[2]  A.A. Kishk,et al.  Invasive Weed Optimization and its Features in Electromagnetics , 2010, IEEE Transactions on Antennas and Propagation.

[3]  Yi Zhang,et al.  Human Group Optimizer with Local Search , 2011, ICSI.

[4]  Ali Husseinzadeh Kashan,et al.  League Championship Algorithm (LCA): An algorithm for global optimization inspired by sport championships , 2014, Appl. Soft Comput..

[5]  Arthur I. Cohen,et al.  A Branch-and-Bound Algorithm for Unit Commitment , 1983, IEEE Transactions on Power Apparatus and Systems.

[6]  A. Gandomi Interior search algorithm (ISA): a novel approach for global optimization. , 2014, ISA transactions.

[7]  Dan Simon,et al.  Biogeography-Based Optimization , 2022 .

[8]  F. Merrikh Bayat,et al.  The runner-root algorithm: A metaheuristic for solving unimodal and multimodal optimization problems inspired by runners and roots of plants in nature , 2015, Appl. Soft Comput..

[9]  Amir Hossein Gandomi,et al.  Chaotic Krill Herd algorithm , 2014, Inf. Sci..

[10]  Seyed Mohammad Mirjalili,et al.  Multi-Verse Optimizer: a nature-inspired algorithm for global optimization , 2015, Neural Computing and Applications.

[11]  Seyedali Mirjalili,et al.  SCA: A Sine Cosine Algorithm for solving optimization problems , 2016, Knowl. Based Syst..

[12]  Ali Kaveh,et al.  Colliding Bodies Optimization: Extensions and Applications , 2015 .

[13]  Dayang N. A. Jawawi,et al.  Electromagnetic field optimization: A physics-inspired metaheuristic optimization algorithm , 2016, Swarm Evol. Comput..

[14]  Xin-She Yang,et al.  BBA: A Binary Bat Algorithm for Feature Selection , 2012, 2012 25th SIBGRAPI Conference on Graphics, Patterns and Images.

[15]  S. Deb,et al.  Elephant Herding Optimization , 2015, 2015 3rd International Symposium on Computational and Business Intelligence (ISCBI).

[16]  Seyedali Mirjalili,et al.  Dragonfly algorithm: a new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems , 2015, Neural Computing and Applications.

[17]  Seyed Mohammad Mirjalili,et al.  The Ant Lion Optimizer , 2015, Adv. Eng. Softw..

[18]  Andrew Lewis,et al.  Grey Wolf Optimizer , 2014, Adv. Eng. Softw..

[19]  Seyed Mohammad Mirjalili,et al.  Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm , 2015, Knowl. Based Syst..

[20]  Weerakorn Ongsakul,et al.  Ramp rate constrained unit commitment by improved priority list and augmented Lagrange Hopfield network , 2008 .

[21]  Farshad Merrikh-Bayat,et al.  The runner-root algorithm , 2015 .

[22]  Zhihua Cui,et al.  Monarch butterfly optimization , 2015, Neural Computing and Applications.

[23]  Xin-She Yang,et al.  Flower Pollination Algorithm for Global Optimization , 2012, UCNC.

[24]  Mohammad-Reza Feizi-Derakhshi,et al.  Forest Optimization Algorithm , 2014, Expert Syst. Appl..

[25]  Xin-She Yang,et al.  A New Metaheuristic Bat-Inspired Algorithm , 2010, NICSO.

[26]  Manuel López-Ibáñez,et al.  Ant colony optimization , 2010, GECCO '10.

[27]  Ardeshir Bahreininejad,et al.  Mine blast algorithm: A new population based algorithm for solving constrained engineering optimization problems , 2013, Appl. Soft Comput..

[28]  Yu Liu,et al.  A new bio-inspired optimisation algorithm: Bird Swarm Algorithm , 2016, J. Exp. Theor. Artif. Intell..

[29]  Andrew Lewis,et al.  Adaptive gbest-guided gravitational search algorithm , 2014, Neural Computing and Applications.

[30]  Ajith Abraham,et al.  Bacterial Foraging Optimization Algorithm: Theoretical Foundations, Analysis, and Applications , 2009, Foundations of Computational Intelligence.

[31]  Leandro dos Santos Coelho,et al.  Earthworm optimisation algorithm: a bio-inspired metaheuristic algorithm for global optimisation problems , 2018, Int. J. Bio Inspired Comput..

[32]  Hussain Shareef,et al.  Lightning search algorithm , 2015, Appl. Soft Comput..

[33]  Hossein Nezamabadi-pour,et al.  BGSA: binary gravitational search algorithm , 2010, Natural Computing.

[34]  Ali Husseinzadeh Kashan,et al.  A new metaheuristic for optimization: Optics inspired optimization (OIO) , 2015, Comput. Oper. Res..

[35]  Amir Hossein Gandomi,et al.  Cuckoo search algorithm: a metaheuristic approach to solve structural optimization problems , 2011, Engineering with Computers.

[36]  Riccardo Poli,et al.  Particle swarm optimization , 1995, Swarm Intelligence.

[37]  Anastasios G. Bakirtzis,et al.  A genetic algorithm solution to the unit commitment problem , 1996 .

[38]  Pinar Çivicioglu,et al.  Backtracking Search Optimization Algorithm for numerical optimization problems , 2013, Appl. Math. Comput..

[39]  Ebrahim Babaei,et al.  Exchange market algorithm , 2014, Appl. Soft Comput..

[40]  Amir Hossein Alavi,et al.  Krill herd: A new bio-inspired optimization algorithm , 2012 .

[41]  Kusum Deep,et al.  A novel Random Walk Grey Wolf Optimizer , 2019, Swarm Evol. Comput..

[42]  Walter L. Snyder,et al.  Dynamic Programming Approach to Unit Commitment , 1987, IEEE Transactions on Power Systems.

[43]  Hossein Nezamabadi-pour,et al.  GSA: A Gravitational Search Algorithm , 2009, Inf. Sci..

[44]  Mohammad Norouzi,et al.  Mixed integer programming of multi-objective security-constrained hydro/thermal unit commitment , 2014 .

[45]  C. D. Gelatt,et al.  Optimization by Simulated Annealing , 1983, Science.

[46]  Andrew Lewis,et al.  Grasshopper Optimisation Algorithm: Theory and application , 2017, Adv. Eng. Softw..

[47]  H. Kuo,et al.  Cultural Evolution Algorithm for Global Optimizations and its Applications , 2013 .